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黑色素瘤和发育异常痣的预测性核染色质特征

Predictive Nuclear Chromatin Characteristics of Melanoma and Dysplastic Nevi.

作者信息

Hanna Matthew G, Liu Chi, Rohde Gustavo K, Singh Rajendra

机构信息

Department of Pathology, University of Pittsburgh Medical Center, Pittsburgh, PA, USA.

Department of Pathology and Laboratory Medicine, The Mount Sinai Hospital and Icahn School of Medicine at Mount Sinai, NY, USA.

出版信息

J Pathol Inform. 2017 Apr 10;8:15. doi: 10.4103/jpi.jpi_84_16. eCollection 2017.

Abstract

BACKGROUND

The diagnosis of malignant melanoma (MM) is among the diagnostic challenges pathologists encounter on a routine basis. Melanoma may arise in patients with preexisting dysplastic nevi (DN) and it is still the cause of 1.7% of all cancer-related deaths. Melanomas often have overlapping histological features with DN, especially those with severe dysplasia. Nucleotyping for identifying nuclear textural features can analyze nuclear DNA structure and organization. The aim of this study is to differentiate MM and DN using these methodologies.

METHODS

Dermatopathology slides diagnosed as MM and DN were retrieved. The glass slides were scanned using an Aperio ScanScopeXT at ×40 (0.25 μ/pixel). Whole slide images (WSI) were annotated for nuclei selection. Nuclear features to distinguish between MM and DN based on chromatin distributions were extracted from the WSI. The morphological characteristics for each nucleus were quantified with the optimal transport-based linear embedding in the continuous domain. Label predictions for individual cell nucleus are achieved through a modified version of linear discriminant analysis, coupled with the k-nearest neighbor classifier. Label for an unknown patient was set by the voting strategy with its pertaining cell nuclei.

RESULTS

Nucleotyping of 139 patient cases of melanoma ( = 67) and DN ( = 72) showed that our method had superior classification accuracy of 81.29%. This is a 6.4% gain in differentiating MM and DN, compared with numerical feature-based method. The distribution differences in nuclei morphology between MM and DN can be visualized with biological interpretation.

CONCLUSIONS

Nucleotyping using quantitative and qualitative analyses may provide enough information for differentiating MM from DN using pixel image data. Our method to segment cell nuclei may offer a practical and inexpensive solution in aiding in the accurate diagnosis of melanoma.

摘要

背景

恶性黑色素瘤(MM)的诊断是病理学家日常面临的诊断挑战之一。黑色素瘤可能发生在已有发育异常痣(DN)的患者中,它仍是所有癌症相关死亡的1.7%的病因。黑色素瘤通常与DN具有重叠的组织学特征,尤其是那些具有严重发育异常的情况。用于识别核纹理特征的核型分析可以分析核DNA结构和组织。本研究的目的是使用这些方法区分MM和DN。

方法

检索诊断为MM和DN的皮肤病理学切片。使用Aperio ScanScopeXT以×40(0.25μm/像素)扫描载玻片。对全玻片图像(WSI)进行注释以选择细胞核。从WSI中提取基于染色质分布区分MM和DN的核特征。每个细胞核的形态特征通过连续域中基于最优传输的线性嵌入进行量化。通过线性判别分析的改进版本结合k近邻分类器实现对单个细胞核的标签预测。未知患者的标签通过与其相关细胞核的投票策略来设定。

结果

对139例黑色素瘤患者(n = 67)和DN患者(n = 72)进行核型分析表明,我们的方法具有81.29%的卓越分类准确率。与基于数值特征的方法相比,在区分MM和DN方面提高了6.4%。MM和DN之间细胞核形态的分布差异可以通过生物学解释可视化。

结论

使用定量和定性分析的核型分析可能提供足够的信息,以便利用像素图像数据区分MM和DN。我们的细胞核分割方法可能为辅助黑色素瘤的准确诊断提供一种实用且廉价的解决方案。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a6ce/5404351/dc23dfa83b33/JPI-8-15-g001.jpg

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